基于滑移角估计的力反馈远程驾驶试验台

Quang Son Le, S. Arogeti, A. Borowsky
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引用次数: 0

摘要

虽然汽车研究在当今发挥着重要作用,但大多数实验活动都需要昂贵的平台,并且涉及安全问题。为了降低成本和保证安全,提出了大量的驾驶模拟器。然而,它们仍然不能反映物理世界,导致研究的任何方面都存在主观评价。本文介绍了一种基于小型汽车移动平台和物理道路的经济实惠的远程驾驶试验台。远程操控站的驾驶员观察安装在车内的前置摄像头拍摄的实时视频。为了获得真实的驾驶体验,我们开发了一种基于小型汽车运动的扭矩反馈机制,以模拟标准汽车前轮和方向盘之间的物理连接的影响。这种机制要求了解汽车的侧滑角,而这不是直接测量的。在这里,我们引入了一个基于监督学习的组合回归模型(RidgeCV和Bootstrap聚合决策树),用于估计高度非线性行为的侧滑角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remote driving testbed with force feedback based on slip angle estimation
While automotive research plays a significant role nowadays, most of the experimental activity demands costly platforms and involves safety issues. Plenty of driving simulators were proposed to reduce the costs and guarantee safety. However, they still cannot reflect the physical world, resulting in subjective assessments in any aspect of the study. This paper introduces an affordable remote driving testbed based on small-scale car-like mobile platforms and a physical road. The driver in the remote driving station observes a real-time video taken from a front-facing camera installed in the car. For a realistic driving experience, we have developed a torque feedback mechanism based on the small-scale car motion to mimic the influence of the physical linkage between the front wheels and the steering wheel of a standard car. This mechanism demands knowledge of the car’s side-slip angle that is not directly measured. Here, we introduce a supervised learning-based combined regression model (RidgeCV and Bootstrap aggregating decision tree) that estimates the side-slip angle for highly non-linear behavior.
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